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Balanced Input Allows Optimal Encoding in a Stochastic Binary Neural Network Model: An Analytical Study

机译:平衡输入允许在随机二进制神经网络模型中进行最佳编码:分析研究

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摘要

Recent neurophysiological experiments have demonstrated a remarkable effect of attention on the underlying neural activity that suggests for the first time that information encoding is indeed actively influenced by attention. Single cell recordings show that attention reduces both the neural variability and correlations in the attended condition with respect to the non-attended one. This reduction of variability and redundancy enhances the information associated with the detection and further processing of the attended stimulus. Beyond the attentional paradigm, the local activity in a neural circuit can be modulated in a number of ways, leading to the general question of understanding how the activity of such circuits is sensitive to these relatively small modulations. Here, using an analytically tractable neural network model, we demonstrate how this enhancement of information emerges when excitatory and inhibitory synaptic currents are balanced. In particular, we show that the network encoding sensitivity -as measured by the Fisher information- is maximized at the exact balance. Furthermore, we find a similar result for a more realistic spiking neural network model. As the regime of balanced inputs has been experimentally observed, these results suggest that this regime is functionally important from an information encoding standpoint.
机译:最近的神经生理学实验已经表明,注意力对潜在的神经活动具有显着影响,这首次表明信息编码确实受到注意力的积极影响。单细胞记录显示,与无人照管的情况相比,注意力降低了照护条件下的神经变异性和相关性。可变性和冗余度的这种减小增强了与伴随刺激的检测和进一步处理相关的信息。除了注意力范式之外,神经回路中的局部活动可以通过多种方式进行调制,这导致了一个普遍的问题,即了解神经回路的活动如何对这些相对较小的调制敏感。在这里,我们使用分析易处理的神经网络模型,演示了当兴奋性和抑制性突触电流达到平衡时,这种信息增强是如何出现的。特别地,我们表明,通过Fisher信息测得的网络编码灵敏度在精确的平衡下达到了最大化。此外,对于更逼真的尖峰神经网络模型,我们发现了类似的结果。由于已经通过实验观察到了平衡输入的机制,因此这些结果表明,从信息编码的角度来看,该机制在功能上很重要。

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  • 作者

    Deco, Gustavo; Hugues, Etienne;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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